Optimizing a Digital Twin for Fault Diagnosis in Grid Connected
Inverters -- A Bayesian Approach
- URL: http://arxiv.org/abs/2212.03564v1
- Date: Wed, 7 Dec 2022 10:44:19 GMT
- Title: Optimizing a Digital Twin for Fault Diagnosis in Grid Connected
Inverters -- A Bayesian Approach
- Authors: Pavol Mulinka, Subham Sahoo, Charalampos Kalalas, Pedro H. J. Nardelli
- Abstract summary: We channelize our efforts towards an online optimization of the digital twins, which allows a flexible implementation with limited data.
For classification performance assessment, we consider different fault cases in virtual synchronous generator (VSG) controlled grid-forming converters.
Our research outcomes reveal the increased accuracy and fidelity levels achieved by our digital twin design.
- Score: 5.335631208278852
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In this paper, a hyperparameter tuning based Bayesian optimization of digital
twins is carried out to diagnose various faults in grid connected inverters. As
fault detection and diagnosis require very high precision, we channelize our
efforts towards an online optimization of the digital twins, which, in turn,
allows a flexible implementation with limited amount of data. As a result, the
proposed framework not only becomes a practical solution for model versioning
and deployment of digital twins design with limited data, but also allows
integration of deep learning tools to improve the hyperparameter tuning
capabilities. For classification performance assessment, we consider different
fault cases in virtual synchronous generator (VSG) controlled grid-forming
converters and demonstrate the efficacy of our approach. Our research outcomes
reveal the increased accuracy and fidelity levels achieved by our digital twin
design, overcoming the shortcomings of traditional hyperparameter tuning
methods.
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